1
0
Fork 0
mirror of https://github.com/immich-app/immich.git synced 2025-01-01 08:31:59 +00:00
immich/docker/docker-compose.yml
Parsa c37bf9d5d0
fix: docker compose pull rate limit (#9600)
* fix: docker compose pull rate limit

with "registry.hub.docker.com/" behind the image name, there was an issue where "docker compose up -d" would throw a rate-limiting error, even when logged in using a docker account.

it doesn't really matter where the image is downloaded from as long as it has the same sha256 hash in docker-compose.yml

* fix: use `docker.io/` for image reference in docker-compose.yml
2024-05-20 09:58:47 -05:00

60 lines
2.1 KiB
YAML

#
# WARNING: Make sure to use the docker-compose.yml of the current release:
#
# https://github.com/immich-app/immich/releases/latest/download/docker-compose.yml
#
# The compose file on main may not be compatible with the latest release.
#
name: immich
services:
immich-server:
container_name: immich_server
image: ghcr.io/immich-app/immich-server:${IMMICH_VERSION:-release}
volumes:
- ${UPLOAD_LOCATION}:/usr/src/app/upload
- /etc/localtime:/etc/localtime:ro
env_file:
- .env
ports:
- 2283:3001
depends_on:
- redis
- database
restart: always
immich-machine-learning:
container_name: immich_machine_learning
# For hardware acceleration, add one of -[armnn, cuda, openvino] to the image tag.
# Example tag: ${IMMICH_VERSION:-release}-cuda
image: ghcr.io/immich-app/immich-machine-learning:${IMMICH_VERSION:-release}
# extends: # uncomment this section for hardware acceleration - see https://immich.app/docs/features/ml-hardware-acceleration
# file: hwaccel.ml.yml
# service: cpu # set to one of [armnn, cuda, openvino, openvino-wsl] for accelerated inference - use the `-wsl` version for WSL2 where applicable
volumes:
- model-cache:/cache
env_file:
- .env
restart: always
redis:
container_name: immich_redis
image: docker.io/redis:6.2-alpine@sha256:c0634a08e74a4bb576d02d1ee993dc05dba10e8b7b9492dfa28a7af100d46c01
restart: always
database:
container_name: immich_postgres
image: docker.io/tensorchord/pgvecto-rs:pg14-v0.2.0@sha256:90724186f0a3517cf6914295b5ab410db9ce23190a2d9d0b9dd6463e3fa298f0
environment:
POSTGRES_PASSWORD: ${DB_PASSWORD}
POSTGRES_USER: ${DB_USERNAME}
POSTGRES_DB: ${DB_DATABASE_NAME}
POSTGRES_INITDB_ARGS: '--data-checksums'
volumes:
- ${DB_DATA_LOCATION}:/var/lib/postgresql/data
restart: always
command: ["postgres", "-c" ,"shared_preload_libraries=vectors.so", "-c", 'search_path="$$user", public, vectors', "-c", "logging_collector=on", "-c", "max_wal_size=2GB", "-c", "shared_buffers=512MB", "-c", "wal_compression=on"]
volumes:
model-cache: